A Latent Variable Modeling Approach for Cognitive EEG Data: An Example From Neurolinguistics

Davide Turco*, Conor Houghton

*Corresponding author for this work

Research output: Contribution to conferenceConference Paperpeer-review

Abstract

Electroencephalography (EEG) provides high temporal resolution data that are valuable for analyzing cognitive processes, but the high noise and dimensionality make analysis difficult. Traditional event-related potential studies lose single-epoch information through epoch averaging and restricting analysis to specific landmarks. To address this, we apply a latent variable model (LVM), LFADS, to encode EEG epochs and infer lower-dimensional dynamical factors reflecting cognitive processes. We first validate LFADS on synthetic EEG data, proving it recovers latent dynamics and external inputs. We then apply LFADS to real EEG data from a reading experiment and find it can reconstruct epochs' signal and distinguish responses to words with different syntactic roles. Moreover, we decode two word features from the inferred factors, with performance comparable to decoding using components obtained from traditional dimensionality-reduction techniques. Our results illustrate the potential of dynamical LVMs as an alternative approach for EEG dimensionality reduction, preserving interpretable factors encoding cognitive information. Applying such models to clinical EEG may uncover temporal biomarkers of cognitive processes.
Original languageEnglish
Publication statusPublished - 8 Mar 2024
EventICLR 2024 Workshop on Learning from Time Series For Health - Vienna, Austria
Duration: 11 May 202411 May 2024
https://timeseriesforhealth.github.io/

Workshop

WorkshopICLR 2024 Workshop on Learning from Time Series For Health
Country/TerritoryAustria
CityVienna
Period11/05/2411/05/24
Internet address

Research Groups and Themes

  • Interactive Artificial Intelligence CDT

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